Manufacturing with the Connected Edge
Industrial and defense environments generate massive amounts of data that can’t wait for the cloud. Latency is often measured in milliseconds, and resiliency is paramount. A manufacturing plant can’t go down due to flaky Wi-Fi or a public cloud outage. “Traditional” approaches — shipping servers, hiring local IT, bespoke development, managing one-off deployments — simply don’t scale. Critical operations require infrastructure that is purpose-built for complexity at the edge. In the era of AI-enabled automation, the challenge isn’t building one edge device; it’s operating hundreds or thousands of devices, consistently and securely, without dedicated IT teams at every site. This requires a holistic architecture that spans three core dimensions: Data : Aggregating structured and unstructured
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